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Large Scale Real-Life Action Recognition Using Conditional Random Fields with Stochastic Training

机译:使用随机训练的条件随机字段进行大规模现实行动识别

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Action recognition is usually studied with limited lab settings and a small data set. Traditional lab settings assume that the start and the end of each action are known. However, this is not true for the real-life activity recognition, where different actions are present in a continuous temporal sequence, with their boundaries unknown to the recognizer. Also, unlike previous attempts, our study is based on a large-scale data set collected from real world activities. The novelty of this paper is twofold: (1) Large-scale non-boundary action recognition; (2) The first application of the averaged stochastic gradient training with feedback (ASF) to conditional random fields. We find the ASF training method outperforms a variety of traditional training methods in this task.
机译:行动识别通常使用有限的实验室设置和小数据集进行研究。传统的实验室设置假定每个操作的开始和结尾都是已知的。然而,对于真实的活动识别,这不是真的,其中不同的动作以连续的时间序列存在,其界限未知到识别器。此外,与以前的尝试不同,我们的研究基于从现实世界活动中收集的大规模数据集。本文的新颖性是双重的:(1)大规模非边界行动识别; (2)第一次应用平均随机梯度训练,反馈(ASF)到条件随机字段。我们发现ASF训练方法优于此任务中的各种传统培训方法。

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